When a user connects to the Internet to fulfill his needs, he often encounters a huge amount of related information. Recommender systems are the techniques for massively filtering information and offering the items that users find them satisfying and interesting. The advances in machine learning methods, especially deep learning, have led to great achievements in recommender systems, although these systems still suffer from challenges such as cold-start and sparsity problems. To solve these problems, context information such as user communication network is usually used. In this paper, we have proposed a novel recommendation method based on Matrix Factorization and graph analysis methods. In addition, we leverage deep Autoencoders to initialize users and items latent factors, and deep embedding method gathers users' latent factors from the user trust graph. The proposed method is implemented on two standard datasets. The experimental results and comparisons demonstrate that the proposed approach is superior to the existing state-of-the-art recommendation methods. Our approach outperforms other comparative methods and achieves great improvements.
翻译:当用户与互联网连接以满足其需要时,他常常遇到大量相关信息。建议系统是大规模过滤信息并提供用户认为令人满意和有趣的项目的技术。机器学习方法的进步,特别是深层学习方法的进步,使推荐系统取得了巨大成就,尽管这些系统仍面临冷启动和宽度问题等挑战。为解决这些问题,通常使用用户通信网络等背景信息。在本文件中,我们提出了一个基于矩阵系数化和图表分析方法的新建议方法。此外,我们利用深自动编码器初始化用户和项目潜在因素,深嵌入方法从用户信任图中收集用户的潜在因素。拟议方法在两个标准数据集中实施。实验结果和比较表明,拟议方法优于现有的最新建议方法。我们的方法比其他比较方法要优,并取得了很大的改进。